I see several things here. First, you may want to set the random seed for replicability (`set.seed(20430)`

). This means that every time you run the code, you will get exactly the same set of pseudorandom variates. Next, your data will just be independent variates; they won't actually have any multivariate structure (although that may be what you want). In general, if you want to generate *multivariate* data, you should use ?mvrnorm, from the MASS package. (For more info, see here.) Third, you don't need a loop to fill a matrix in R, just generate as many values as you like and add them directly using the `data=`

argument in the `matrix()`

function. If you really were committed to using a loop, you should probably use a double loop, so that you are looping over the columns, and within each loop, looping over the rows. (Note that this is a very inefficient way to code in R--although I do things like that all the time ;-). Lastly, I can't tell what `p`

is supposed to be doing in your code.

Here is a basic way to do what you seem to be going for:

```
set.seed(20430)
n = 1000
k = 5
p = 100
mu = 0
sigma = 1
dat = rnorm(n*k)
x = matrix(data=dat, nrow=n, ncol=k)
```

If you really wanted to use loops you could do it like this:

```
x=matrix(data=NA, nrow=n, ncol=k)
for(j in 1:k){
for(i in 1:n){
x[i,j] = rnorm(1, mu, sigma)
}
}
```

`x[,i]`

not`x[[i]]`

. An easier way to do it with no loop is`x<-matrix(data=rnorm(n*k,mu,sigma), nrow=n, ncol=k)`

– Glen_b Feb 4 '13 at 0:51